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Auto-Detection of Tibial Plateau Angle in Canine Radiographs Using a Deep Learning Approach

机译:使用深度学习方法自动检测犬射线照相中的胫骨平台角度

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Stifle joint issues are a major cause of lameness in dogs and it can be a significant marker for various forms of diseases or injuries. A known Tibial Plateau Angle (TPA) helps in the reduction of the diagnosis time of the cause. With the state of the art object detection algorithm YOLO, and its variants, this paper delves into identifying joints, their centroids and other regions of interest to draw multiple line axes and finally calculating the TPA. The methods investigated predict successfully the TPA within the normal range for 80 percent of the images.
机译:Stifle联合问题是狗的主要原因,可以是各种形式的疾病或伤害的重要标记。 已知的胫骨平台角度(TPA)有助于减少原因的诊断时间。 随着现有物体检测算法YOLO的状态,及其变体,本文涉及识别关节,其质心和其他感兴趣的区域,以绘制多个线轴并最终计算TPA。 调查的方法在正常范围内成功预测到80%的图像中的TPA。

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